Data Engineer – Healthcare Analytics Platform
Analytics
Azure Data Factory
Business Analytics
Business Intelligence
Caboodle
Cloud
Cloud Platform
Data Analysis
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Data Engineer
Data Integration
Data Pipeline
Data Platform
Data Processing
Data Visualization
Data Viz
Data Warehouse
Data Warehousing
Database
Databricks
Dataviz
ETL
Exasol
Microsoft Azure
Power BI
Reporting and Analytics
SQL
Tableau
Job Description
Benefits
- Medical, Rx, Dental & Vision Insurance
- Personal and Family Sick Time & Company Paid Holidays
- Position may be eligible for a discretionary variable incentive bonus
- Parental Leave and Adoption Assistance
- 401(k) Retirement Plan
- Basic Life & Supplemental Life
- Health Savings Account, Dental/Vision & Dependent Care Flexible Spending Accounts
- Short-Term & Long-Term Disability
- Student Loan PayDown
- Tuition Reimbursement, Personal Development & Learning Opportunities
- Skills Development & Certifications
- Employee Referral Program
- Corporate Sponsored Events & Community Outreach
- Emergency Back-Up Childcare Program
- Mobility Stipend
Location: Atlanta, GA (onsite) • Salary: USD 77,000 - 129,000 per year • Education: Bachelor's degree • Experience: 5+ years
The role centers on designing and building an enterprise Contract Performance Analytics platform for a large healthcare system, focusing on data architecture, ELT/ETL pipeline development, and integrating clinical, claims, and operational data into a scalable analytics ecosystem.
Responsibilities
- Design, develop, and maintain robust ETL/ELT pipelines to ingest, transform, and load healthcare data from diverse structured and unstructured sources
- Develop pipelines to process data from CMS and payer files (CCLF, paid claims, PUG) as well as Epic data models and extracts (Caboodle, Clarity)
- Build and optimize data models to support analytics, reporting, and operational use cases, including BI and downstream analytics consumption
- Transform raw data into standardized, analytics-ready canonical data models and curated data marts
- Build lakehouse or medallion architecture, data ingestion patterns, and orchestration frameworks
- Implement and maintain CI/CD pipelines for data engineering workflows, including pipelines and scheduled jobs, using version control and automation tools
- Collaborate with database administrators, analysts, and application teams to integrate data sources, design schemas, and support downstream data consumers
- Ensure data quality, integrity, and accuracy through validation, monitoring, logging, and alerting
- Support data migration, integration, and modernization initiatives, including legacy system upgrades, optimization of large-scale ETL pipelines, query performance, and cloud adoption efforts
- Troubleshoot and resolve issues in development and production environments to maintain stable data pipelines
- Document data flows, pipelines, test cases, and technical solutions to support knowledge sharing and compliance requirements
- Stay current with emerging tools, technologies, and best practices in data engineering and cloud platforms
Requirements
- US Citizenship or a Green Card is required
- Bachelor’s degree in Computer Science, Data Analytics, Software Engineering, Information Systems, or related fields
- A minimum of five years of experience in data engineering, ETL/ELT development, or data platform engineering in a healthcare setting
- Experience with healthcare data including claims, clinical, payer, or population health datasets
- Experience with healthcare data interoperability standards (FHIR, HL7)
- Proficiency in Python and SQL for data engineering and transformation workloads
- Hands-on experience designing and building ETL/ELT pipelines and data ingestion frameworks
- Experience with modern cloud data platforms or ETL/ELT tools (Databricks, Azure Data Factory, AWS Glue)
- Experience with lakehouse or medallion architectures for analytics platforms
- Strong knowledge of relational database design, data warehouses, and/or data lakes (star/snowflake schemas)
- Experience working with relational and/or distributed data systems, including data modeling
- Experience in a cloud environment (AWS or Azure) supporting data solutions
- Experience with CI/CD practices and version control tools (e.g., Git)
- Experience using monitoring and logging tools to support data pipeline reliability
- Experience working with PHI and healthcare data privacy/security requirements
- Ability to work effectively in an Agile development environment
- Strong analytical and troubleshooting skills, and the ability to communicate technical concepts clearly to clients, engineers, and business stakeholders
- Ability to work independently in a fast-paced, client-facing environment
Technologies
- Python
- SQL
- Databricks
- Azure Data Factory
- AWS Glue
- Git
- Tableau
- Power BI
- AWS
- Azure
- Snowflake
- Exasol
- Epic
- Caboodle
- Clarity
- Athena
Nice to Have
- Previous experience working with Epic and/or Athena in a healthcare setting for data engineering
- Previous experience with Exasol or similar analytics platform
- AWS, Azure, Databricks, Snowflake or other data engineering certifications
- Experience with data visualization or analytics tools (Tableau, Power BI)
- Exposure to microservices based architectures or AI/ML enabled data pipelines
- Prior consulting experience